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作 者:Yuao Mei Zhipeng Gui Jinghang Wu Dehua Peng Rui Li Huayi Wu Zhengyang Wei
机构地区:[1]School of Remote Sensing and Information Engineering,Wuhan University,Wuhan,China [2]State Key Laboratory of Information Engineering in Surveying,Mapping and Remote Sensing,Wuhan University,Wuhan,China [3]Collaborative Innovation Center of Geospatial Technology,Wuhan University,Wuhan,China [4]Institute for Computational and Mathematical Engineering,Stanford University,Stanford,CA,USA
出 处:《Geo-Spatial Information Science》2022年第3期365-382,共18页地球空间信息科学学报(英文)
基 金:National Natural Science Foundation of China[Grant Nos.42090010,U20A2091,41971349,and 41930107];National Key R&D Program of China[Grant Nos.2018YFC0809800 and 2017YFB0503704].
摘 要:Population spatialization is widely used for spatially downscaling census population data to finer-scale.The core idea of modern population spatialization is to establish the association between ancillary data and population at the administrative-unit-level(AUlevel)and transfer it to generate the gridded population.However,the statistical characteristic of attributes at the pixel-level differs from that at the AU-level,thus leading to prediction bias via the cross-scale modeling(i.e.scale mismatch problem).In addition,integrating multi-source data simply as covariates may underutilize spatial semantics,and lead to incorrect population disaggregation;while neglecting the spatial autocorrelation of population generates excessively heterogeneous population distribution that contradicts to real-world situation.To address the scale mismatch in downscaling,this paper proposes a Cross-Scale Feature Construction(CSFC)method.More specifically,by grading pixel-level attributes,we construct the feature vector of pixel grade proportions to narrow the scale differences in feature representation between AU-level and pixel-level.Meanwhile,fine-grained building patch and mobile positioning data are utilized to adjust the population weighting layer generated from POI-density-based regression modeling.Spatial filtering is furtherly adopted to model the spatial autocorrelation effect of population and reduce the heterogeneity in population caused by pixel-level attribute discretization.Through the comparison with traditional feature construction method and the ablation experiments,the results demonstrate significant accuracy improvements in population spatialization and verify the effectiveness of weight correction steps.Furthermore,accuracy comparisons with WorldPop and GPW datasets quantitatively illustrate the advantages of the proposed method in fine-scale population spatialization.
关 键 词:Random forest(RF) point of interests(POIs) mobile positioning data natural breaks spatial filtering population mapping dasymetric downscaling
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